Explainable AI, Session 3: Explainability Options VIDEO
Understand the challenges in generating explanations
Outline options to explain machine learning models
Specific options include using interpretable models, global model specific feature importance, and post-hoc explanations
Other Videos By LLMs Explained - Aggregate Intellect - AI.SCIENCE 2021-09-02 AI Product, Part 8: Short-term Validation 2021-09-02 AI Product, Part 7: Storytelling 2021-09-02 AI Product, Part 6: Product Team 2021-09-02 AI Product, Part 5: Discovery 2021-09-02 AI Product, Part 4: Talking to Users 2021-09-02 AI Product, Part 3: Ideation 2021-09-02 AI Product, Part 2: Frameworks 2021-09-02 AI Product, Part 1: Principles 2021-09-01 Explainable AI, Session 5: Intro to SHAP 2021-09-01 Explainable AI, Session 4: Intro to LIME 2021-09-01 Explainable AI, Session 3: Explainability Options 2021-09-01 Explainable AI, Session 2: Why Do We Need Machine Learning Explanations 2021-09-01 Explainable AI, Session 1: Introduction, Welcome & A Message from the Instructor 2021-08-31 Graph Neural Networks, Session 6: DeepWalk and Node2Vec 2021-08-31 Graph Neural Networks, Session 5: Graph Attention Networks 2021-08-31 Graph Neural Networks, Session 4: Simple Graph Convolution 2021-08-31 Graph Neural Networks, Session 3: Machine-Learning Tasks on Graphs 2021-08-31 Graph Neural Networks, Session 2: Graph Definition 2021-08-31 Graph Neural Networks, Session 1: Introduction to Graphs 2021-08-26 Reinforcement Learning in the Real World (with Professor Matthew Taylor) 2021-05-18 Autonomous Experiments for Structural Design in 3d Printing
Tags: deep learning
machine learning